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Dive into the research topics where Rhiju Das is active.

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Featured researches published by Rhiju Das.


Methods in Enzymology | 2011

Rosetta3: An Object-Oriented Software Suite for the Simulation and Design of Macromolecules

Andrew Leaver-Fay; Michael D. Tyka; Steven M. Lewis; Oliver F. Lange; James Thompson; Ron Jacak; Kristian W. Kaufman; P. Douglas Renfrew; Colin A. Smith; Will Sheffler; Ian W. Davis; Seth Cooper; Adrien Treuille; Daniel J. Mandell; Florian Richter; Yih-En Andrew Ban; Sarel J. Fleishman; Jacob E. Corn; David E. Kim; Sergey Lyskov; Monica Berrondo; Stuart Mentzer; Zoran Popović; James J. Havranek; John Karanicolas; Rhiju Das; Jens Meiler; Tanja Kortemme; Jeffrey J. Gray; Brian Kuhlman

We have recently completed a full re-architecturing of the ROSETTA molecular modeling program, generalizing and expanding its existing functionality. The new architecture enables the rapid prototyping of novel protocols by providing easy-to-use interfaces to powerful tools for molecular modeling. The source code of this rearchitecturing has been released as ROSETTA3 and is freely available for academic use. At the time of its release, it contained 470,000 lines of code. Counting currently unpublished protocols at the time of this writing, the source includes 1,285,000 lines. Its rapid growth is a testament to its ease of use. This chapter describes the requirements for our new architecture, justifies the design decisions, sketches out central classes, and highlights a few of the common tasks that the new software can perform.


Annual Review of Biochemistry | 2008

Macromolecular Modeling with Rosetta

Rhiju Das; David Baker

Advances over the past few years have begun to enable prediction and design of macromolecular structures at near-atomic accuracy. Progress has stemmed from the development of reasonably accurate and efficiently computed all-atom potential functions as well as effective conformational sampling strategies appropriate for searching a highly rugged energy landscape, both driven by feedback from structure prediction and design tests. A unified energetic and kinematic framework in the Rosetta program allows a wide range of molecular modeling problems, from fibril structure prediction to RNA folding to the design of new protein interfaces, to be readily investigated and highlights areas for improvement. The methodology enables the creation of novel molecules with useful functions and holds promise for accelerating experimental structural inference. Emerging connections to crystallographic phasing, NMR modeling, and lower-resolution approaches are described and critically assessed.


Proceedings of the National Academy of Sciences of the United States of America | 2007

Automated de novo prediction of native-like RNA tertiary structures

Rhiju Das; David Baker

RNA tertiary structure prediction has been based almost entirely on base-pairing constraints derived from phylogenetic covariation analysis. We describe here a complementary approach, inspired by the Rosetta low-resolution protein structure prediction method, that seeks the lowest energy tertiary structure for a given RNA sequence without using evolutionary information. In a benchmark test of 20 RNA sequences with known structure and lengths of ≈30 nt, the new method reproduces better than 90% of Watson–Crick base pairs, comparable with the accuracy of secondary structure prediction methods. In more than half the cases, at least one of the top five models agrees with the native structure to better than 4 Å rmsd over the backbone. Most importantly, the method recapitulates more than one-third of non-Watson–Crick base pairs seen in the native structures. Tandem stacks of “sheared” base pairs, base triplets, and pseudoknots are among the noncanonical features reproduced in the models. In the cases in which none of the top five models were native-like, higher energy conformations similar to the native structures are still sampled frequently but not assigned low energies. These results suggest that modest improvements in the energy function, together with the incorporation of information from phylogenetic covariance, may allow confident and accurate structure prediction for larger and more complex RNA chains.


Nature | 2007

High-resolution structure prediction and the crystallographic phase problem

Bin Qian; Srivatsan Raman; Rhiju Das; Philip Bradley; Airlie J. McCoy; Randy J. Read; David Baker

The energy-based refinement of low-resolution protein structure models to atomic-level accuracy is a major challenge for computational structural biology. Here we describe a new approach to refining protein structure models that focuses sampling in regions most likely to contain errors while allowing the whole structure to relax in a physically realistic all-atom force field. In applications to models produced using nuclear magnetic resonance data and to comparative models based on distant structural homologues, the method can significantly improve the accuracy of the structures in terms of both the backbone conformations and the placement of core side chains. Furthermore, the resulting models satisfy a particularly stringent test: they provide significantly better solutions to the X-ray crystallographic phase problem in molecular replacement trials. Finally, we show that all-atom refinement can produce de novo protein structure predictions that reach the high accuracy required for molecular replacement without any experimental phase information and in the absence of templates suitable for molecular replacement from the Protein Data Bank. These results suggest that the combination of high-resolution structure prediction with state-of-the-art phasing tools may be unexpectedly powerful in phasing crystallographic data for which molecular replacement is hindered by the absence of sufficiently accurate previous models.


Proteins | 2009

Structure prediction for CASP8 with all-atom refinement using Rosetta

Srivatsan Raman; Robert B. Vernon; James Thompson; Michael D. Tyka; Ruslan I. Sadreyev; Jimin Pei; David E. Kim; Elizabeth H. Kellogg; Frank DiMaio; Oliver F. Lange; Lisa N. Kinch; Will Sheffler; Bong Hyun Kim; Rhiju Das; Nick V. Grishin; David Baker

We describe predictions made using the Rosetta structure prediction methodology for the Eighth Critical Assessment of Techniques for Protein Structure Prediction. Aggressive sampling and all‐atom refinement were carried out for nearly all targets. A combination of alignment methodologies was used to generate starting models from a range of templates, and the models were then subjected to Rosetta all atom refinement. For the 64 domains with readily identified templates, the best submitted model was better than the best alignment to the best template in the Protein Data Bank for 24 cases, and improved over the best starting model for 43 cases. For 13 targets where only very distant sequence relationships to proteins of known structure were detected, models were generated using the Rosetta de novo structure prediction methodology followed by all‐atom refinement; in several cases the submitted models were better than those based on the available templates. Of the 12 refinement challenges, the best submitted model improved on the starting model in seven cases. These improvements over the starting template‐based models and refinement tests demonstrate the power of Rosetta structure refinement in improving model accuracy. Proteins 2009.


RNA | 2009

Coarse-grained modeling of large RNA molecules with knowledge-based potentials and structural filters

Magdalena Jonikas; Randall J. Radmer; Alain Laederach; Rhiju Das; Samuel M. Pearlman; Daniel Herschlag; Russ B. Altman

Understanding the function of complex RNA molecules depends critically on understanding their structure. However, creating three-dimensional (3D) structural models of RNA remains a significant challenge. We present a protocol (the nucleic acid simulation tool [NAST]) for RNA modeling that uses an RNA-specific knowledge-based potential in a coarse-grained molecular dynamics engine to generate plausible 3D structures. We demonstrate NASTs capabilities by using only secondary structure and tertiary contact predictions to generate, cluster, and rank structures. Representative structures in the best ranking clusters averaged 8.0 +/- 0.3 A and 16.3 +/- 1.0 A RMSD for the yeast phenylalanine tRNA and the P4-P6 domain of the Tetrahymena thermophila group I intron, respectively. The coarse-grained resolution allows us to model large molecules such as the 158-residue P4-P6 or the 388-residue T. thermophila group I intron. One advantage of NAST is the ability to rank clusters of structurally similar decoys based on their compatibility with experimental data. We successfully used ideal small-angle X-ray scattering data and both ideal and experimental solvent accessibility data to select the best cluster of structures for both tRNA and P4-P6. Finally, we used NAST to build in missing loops in the crystal structures of the Azoarcus and Twort ribozymes, and to incorporate crystallographic data into the Michel-Westhof model of the T. thermophila group I intron, creating an integrated model of the entire molecule. Our software package is freely available at https://simtk.org/home/nast.


Nature Methods | 2010

Atomic accuracy in predicting and designing noncanonical RNA structure

Rhiju Das; John Karanicolas; J. David Baker

We present fragment assembly of RNA with full-atom refinement (FARFAR), a Rosetta framework for predicting and designing noncanonical motifs that define RNA tertiary structure. In a test set of thirty-two 6–20-nucleotide motifs, FARFAR recapitulated 50% of the experimental structures at near-atomic accuracy. Sequence redesign calculations recovered native bases at 65% of residues engaged in noncanonical interactions, and we experimentally validated mutations predicted to stabilize a signal recognition particle domain.


Proteins | 2007

Structure prediction for CASP7 targets using extensive all-atom refinement with Rosetta@home

Rhiju Das; Bin Qian; Srivatsan Raman; Robert B. Vernon; James Thompson; Philip Bradley; Sagar D. Khare; Michael D. Tyka; Divya Bhat; Dylan Chivian; David E. Kim; William Sheffler; Lars Malmström; Andrew M. Wollacott; Chu Wang; Ingemar André; David Baker

We describe predictions made using the Rosetta structure prediction methodology for both template‐based modeling and free modeling categories in the Seventh Critical Assessment of Techniques for Protein Structure Prediction. For the first time, aggressive sampling and all‐atom refinement could be carried out for the majority of targets, an advance enabled by the Rosetta@home distributed computing network. Template‐based modeling predictions using an iterative refinement algorithm improved over the best existing templates for the majority of proteins with less than 200 residues. Free modeling methods gave near‐atomic accuracy predictions for several targets under 100 residues from all secondary structure classes. These results indicate that refinement with an all‐atom energy function, although computationally expensive, is a powerful method for obtaining accurate structure predictions. Proteins 2007.


RNA | 2012

RNA-Puzzles: A CASP-like evaluation of RNA three-dimensional structure prediction

José Almeida Cruz; Marc Frédérick Blanchet; Michal Boniecki; Janusz M. Bujnicki; Shi-Jie Chen; Song Cao; Rhiju Das; Feng Ding; Nikolay V. Dokholyan; Samuel Coulbourn Flores; Lili Huang; Christopher A. Lavender; Véronique Lisi; François Major; Katarzyna Mikolajczak; Dinshaw J. Patel; Anna Philips; Tomasz Puton; John SantaLucia; Fredrick Sijenyi; Thomas Hermann; Kristian Rother; Magdalena Rother; Alexander Serganov; Marcin Skorupski; Tomasz Soltysinski; Parin Sripakdeevong; Irina Tuszynska; Kevin M. Weeks; Christina Waldsich

We report the results of a first, collective, blind experiment in RNA three-dimensional (3D) structure prediction, encompassing three prediction puzzles. The goals are to assess the leading edge of RNA structure prediction techniques; compare existing methods and tools; and evaluate their relative strengths, weaknesses, and limitations in terms of sequence length and structural complexity. The results should give potential users insight into the suitability of available methods for different applications and facilitate efforts in the RNA structure prediction community in ongoing efforts to improve prediction tools. We also report the creation of an automated evaluation pipeline to facilitate the analysis of future RNA structure prediction exercises.


Science | 2008

Remeasuring the Double Helix

Rebecca S. Mathew-Fenn; Rhiju Das; Pehr B. Harbury

DNA is thought to behave as a stiff elastic rod with respect to the ubiquitous mechanical deformations inherent to its biology. To test this model at short DNA lengths, we measured the mean and variance of end-to-end length for a series of DNA double helices in solution, using small-angle x-ray scattering interference between gold nanocrystal labels. In the absence of applied tension, DNA is at least one order of magnitude softer than measured by single-molecule stretching experiments. Further, the data rule out the conventional elastic rod model. The variance in end-to-end length follows a quadratic dependence on the number of base pairs rather than the expected linear dependence, indicating that DNA stretching is cooperative over more than two turns of the DNA double helix. Our observations support the idea of long-range allosteric communication through DNA structure.

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David Baker

University of Washington

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